Accurate Automatic 3D Annotation of Traffic Lights and Signs for Autonomous Driving
3D detection of traffic management objects, such as traffic lights and road signs, is vital for self-driving cars, particularly for address-to-address navigation where vehicles encounter numerous intersections with these static objects. This paper introduces a novel method for automatically generati...
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Zusammenfassung: | 3D detection of traffic management objects, such as traffic lights and road
signs, is vital for self-driving cars, particularly for address-to-address
navigation where vehicles encounter numerous intersections with these static
objects. This paper introduces a novel method for automatically generating
accurate and temporally consistent 3D bounding box annotations for traffic
lights and signs, effective up to a range of 200 meters. These annotations are
suitable for training real-time models used in self-driving cars, which need a
large amount of training data. The proposed method relies only on RGB images
with 2D bounding boxes of traffic management objects, which can be
automatically obtained using an off-the-shelf image-space detector neural
network, along with GNSS/INS data, eliminating the need for LiDAR point cloud
data. |
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DOI: | 10.48550/arxiv.2409.12620 |